Learning unitaries with quantum statistical queries
Armando Angrisani

TL;DR
This paper introduces algorithms for learning unitary operators using quantum statistical queries, enabling efficient learning in resource-limited quantum settings and highlighting both advantages and limitations of this approach.
Contribution
It develops new algorithms leveraging quantum statistical queries for unitary learning, generalizing previous methods and establishing both upper and lower bounds on their efficiency.
Findings
Quantum Goldreich-Levin algorithm implemented with quantum statistical queries.
Efficient learning of quantum Boolean functions, juntas, and shallow circuits.
Exponential lower bounds for certain tasks highlight limitations of quantum statistical queries.
Abstract
We propose several algorithms for learning unitary operators from quantum statistical queries with respect to their Choi-Jamiolkowski state. Quantum statistical queries capture the capabilities of a learner with limited quantum resources, which receives as input only noisy estimates of expected values of measurements. Our approach leverages quantum statistical queries to estimate the Fourier mass of a unitary on a subset of Pauli strings, generalizing previous techniques developed for uniform quantum examples. Specifically, we show that the celebrated quantum Goldreich-Levin algorithm can be implemented with quantum statistical queries, whereas the prior version of the algorithm involves oracle access to the unitary and its inverse. As an application, we prove that quantum Boolean functions with constant total influence or with constant degree are efficiently learnable in our model.…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Machine Learning and Algorithms · Machine Learning and Data Classification
